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A Graduate School Recommendation System Using the Multi-Class Support Vector Machine and KNN Approaches

机译:使用多类支持向量机和KNN方法的研究生推荐系统

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摘要

With the advancement in technology and increased demand on skilled workers these days, education becomes a stepping stone in securing jobs with long-term perspective. As competition for admission into higher education increases, it becomes even more important for applicants to find graduate schools that fit their requirements and expectation. Selecting appropriate schools to apply, however, is a time-consuming process, especially when looking for schools at graduate level due to the various factors in decision making imposed by the schools and applicants. In this paper, we propose a recommendation system that suggests appealing graduate programs to students based on the Support Vector Machine and K-Nearest Neighbor approaches. As graduate programs make decisions based on applicants' qualification, our recommender considers user's personal data and data of various graduate programs obtained from online education portals to make suggestions. We conduct an empirical study using data of current graduate schools and former graduate school applicants, and the performance evaluation validates the merit of our suggestions.
机译:如今,随着技术的进步和对熟练工人的需求增加,教育已成为从长远角度确保工作的垫脚石。随着高等教育入学竞争的加剧,申请者找到符合其要求和期望的研究生院变得越来越重要。但是,选择合适的学校进行申请是一个耗时的过程,特别是在寻找毕业生级别的学校时,由于学校和申请人所施加的决策因素多种多样。在本文中,我们提出了一种建议系统,该建议系统基于支持向量机和K最近邻方法向学生建议有吸引力的研究生课程。当研究生课程根据申请人的资格做出决定时,我们的推荐者将考虑用户的个人数据以及从在线教育门户网站获得的各种研究生课程的数据以提出建议。我们使用当前研究生院和前研究生申请者的数据进行了实证研究,绩效评估证明了我们建议的价值。

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